基于物联网的智能家居:机器学习方法

Md. Kamal Ibn Shafi, Md. Rakibuz Sultan, Sheikh Md. Mushfiqur Rahman, Md. Moinul Hoque
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引用次数: 0

摘要

在当今世界,智能家居正缓慢而稳步地成为我们日常生活的一部分。物联网为它提供了另一个维度,物联网连接的设备比人类更多也就不足为奇了。本文详细分析了当前最先进的基于物联网的智能家居系统,并提出了一种使用机器学习(ML)技术的新方法,使其能够根据现实生活中的预测自动有效地控制物联网设备。生成合成数据,并采集部分实时传感器数据用于训练系统控制模型。人类存在计数和不同的环境变量,如温度、湿度和亮度是预测过程的特点。此外,模型的控制级别是类属性。采用决策树算法对所提出的控制模型数据进行分类。另一方面,利用交叉验证技术,测量了模型的性能评价,说明了系统的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Based Smart Home: A Machine Learning Approach
Smart home is slowly but steadily becoming a part of our daily life in today’s world. IoT provides another dimension to it, and this should not be surprising that there are more IoT-connected devices than humans. This paper scrutinized the current state-of-the-art IoT-based smart home system and proposed a new approach using the Machine Learning(ML) technique, so that it is capable of controlling IoT devices automatically and effectively based on its prediction in real life. Synthetic data is generated, and a portion of real-time sensor data is collected to train the system controlling models. Human presence count and different environmental variables like Temperature, Humidity, and Luminosity are the features of the prediction procedure. Besides, the Controlling Levels of the models are the class attributes. The Decision Tree algorithm is implemented to classify the proposed controlling models’ data. On the other hand, Using the cross-validation technique, performance evaluation of the models is measured, illustrating the system capability.
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